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Modelling the impacts of weather and climate variability on crop productivity over a large area: A new process-based model development, optimization, and uncertainties analysis

机译:modelling the impacts of weather and climate variability on crop productivity over a large area: a new process-based model development, optimization, and uncertainties analysis

摘要

Process-based crop models are increasingly being used to investigate the impacts of weather and climate variability (change) on crop growth and production, especially at a large scale. Crop models that account for the key impact mechanisms of climate variability and are accurate over a large area must be developed. Here, we present anew process-based general Model to capture the Crop-Weather relationship over a Large Area (MCWLA). The MCWLA is optimized and tested for spring maize on the Northeast China Plain and summer maize on the North China Plain, respectively. We apply the Bayesian probability inversion and a Markov chain Monte Carlo (MCMC) technique to the MCWLA to analyze uncertainties in parameter estimation and model prediction and to optimize the model. Ensemble hindcasts (by perturbing model parameters) and deterministic hindcasts (using the optimal parameters set) were carried out and compared with the detrended long-term yields series both at the crop model grid (0.5 degrees x 0.5 degrees) and province scale. Agreement between observed and modelled yield was variable, with correlation coefficients ranging from 0.03 to 0.88 (p 0.01) at the model grid scale and from 0.45 to 0.82 (p 0.01) at the province scale. Ensemble hindcasts captured significantly the interannual variability in crop yield at all the four investigated provinces from 1985 to 2002. MCWLA includes the process-based representation of the coupled CO(2) and H(2)O exchanges; its simulations on crop response to elevated CO(2) concentration agree well with the controlled-environment experiments, suggesting its validity also in future climate. We demonstrate that the MCWLA, together with the Bayesian probability inversion and a MCMC technique, is an effective tool to investigate the impacts of climate variability on crop productivity over a large area, as well as the uncertainties. (C) 2008 Elsevier B.V. All rights reserved.
机译:越来越多地使用基于过程的作物模型来研究天气和气候多变性(变化)对作物生长和产量的影响,尤其是在大规模生产中。必须建立解释气候变化关键影响机制并在大范围内保持精确的作物模型。在这里,我们提出了一个新的基于过程的通用模型来捕获大面积作物与天气之间的关系(MCWLA)。 MCWLA分别针对东北平原的春玉米和华北平原的夏玉米进行了优化和测试。我们将贝叶斯概率反演和马尔可夫链蒙特卡洛(MCMC)技术应用于MCWLA,以分析参数估计和模型预测中的不确定性并优化模型。进行了整体后继预报(通过干扰模型参数)和确定性后继预报(使用最佳参数集),并将其与在作物模型网格(0.5度x 0.5度)和省级尺度上趋势下降的长期单产序列进行了比较。观测到的和模拟的产量之间的一致性是可变的,在模型网格规模上的相关系数为0.03至0.88(p <0.01),在省级规模上的相关系数为0.45至0.82(p <0.01)。 1985年至2002年,在所有四个调查省份中,整体后遗迹捕获的作物产量均出现年际变化。MCWLA包括基于过程的CO(2)和H(2)O交换耦合;其对作物对升高的CO(2)浓度响应的模拟与受控环境实验吻合得很好,表明其在未来气候中的有效性。我们证明,MCWLA与贝叶斯概率反演和MCMC技术一起,是研究气候变异性对大面积作物生产力以及不确定性影响的有效工具。 (C)2008 Elsevier B.V.保留所有权利。

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